Real-Time Remote-Health Monitoring Systems: a Review on Patients Prioritisation for Multiple-Chronic Diseases, Taxonomy Analysis, Concerns and Solution Procedure


Remotely monitoring a patient’s condition is a serious issue and must be addressed. Remote health monitoring systems (RHMS) in telemedicine refers to resources, strategies, methods and installations that enable doctors or other medical professionals to work remotely to consult, diagnose and treat patients. The goal of RHMS is to provide timely medical services at remote areas through telecommunication technologies. Through major advancements in technology, particularly in wireless networking, cloud computing and data storage, RHMS is becoming a feasible aspect of modern medicine. RHMS for the prioritisation of patients with multiple chronic diseases (MCDs) plays an important role in sustainably providing high-quality healthcare services. Further investigations are required to highlight the limitations of the prioritisation of patients with MCDs over a telemedicine environment. This study introduces a comprehensive and inclusive review on the prioritisation of patients with MCDs in telemedicine applications. Furthermore, it presents the challenges and open issues regarding patient prioritisation in telemedicine. The findings of this study are as follows: (1) The limitations and problems of existing patients’ prioritisation with MCDs are presented and emphasised. (2) Based on the analysis of the academic literature, an accurate solution for remote prioritisation in a large scale of patients with MCDs was not presented. (3) There is an essential need to produce a new multiple-criteria decision-making theory to address the current problems in the prioritisation of patients with MCDs.


Telemedicine has been increasingly used in healthcare because it offers several benefits, such as providing the health-related information of patients [1,2,3,4,5,6,7] and remote healthcare services [8,9,10,11,12,13,14]. Telemedicine is a remote medical practice in which different healthcare providers cooperate and permit their collaborative efforts in the diagnosis or treatment of a disease [15,16,17,18]. Remote healthcare services can be beneficial for patients living in isolated communities and far-flung regions, provided that they receive professional care from physicians or specialists who travel to visit them [19,20,21,22].

Triage in telemedicine is the concept of sorting patients in order of treatment necessity in a large-scale emergency. In other words, it is the process of assessing and prioritising care for all patients and casualties [23,24,25,26,27]. A prioritisation process is often conducted to ensure that care is given in a suitable and timely manner [28, 29]. The early identification of critically ill patients and their stratification into priority levels upon acceptance to the emergency department (ED) are necessary for the quality and integrity of emergency medicine [30,31,32,33,34]. Hence, patient prioritisation aims to identify patients who can safely wait and those who cannot [35]. Patient prioritisation improves fairness and decreases urgent patients’ waiting times can affect the distinctions among areas because it efficiently appropriates available resources within each region [36, 37]. A patient’s case must be the main basis in assessing priority according to medical guidelines [38].

Remote healthcare prioritisation systems have gained considerable attention because of their significant role in the lives of people [39, 40]. Remote prioritisation means triaging patients and identifying their priority for treatment and transportation to hospitals after the evaluation of their vital signs [41]. For remote patients, continuous monitoring from a distant hospital is highly desirable because it ensures adequate care and provides suitable guidelines for proper medication [42]. Moreover, remote patient care is currently becoming a major concern in healthcare services [43]. Patients with multiple chronic conditions (e.g., chronic heart disease [CHD], chronic blood pressure [BP] disease, fall detection and diabetes) are at great risk of experiencing poor daily functioning [26]. Multiple chronic diseases (MCDs) contribute to frailty and disability. Functional limitations often complicate access to healthcare, interfere with self-management and necessitate reliance on caregivers [44]. Remote home patients, especially the elderly with MCDs, are at critical risk of harm in various situations [45]. Thus, prioritisation processes for MCDs are important to the continuous care of remote patients in pervasive environments.

A comprehensive and deeply literature review is essential for highlighting and scrutinising the process of patient prioritisation with MCDs in telemedicine applications. Challenges in patient prioritisation and open issues within telemedicine applications require further investigation (Fig. 1).

Fig. 1

Review and analysis structure

The rest of the study is organised as follows: Section 2 systematically reviews existing patients’ prioritisation studies. Section 3 presents RHMS for MCDs. Section 4 presents concern for prioritisation process. Section 5 presents multiple-criteria decision-making (MCDM) techniques as a solution for problems in the prioritisation of patients with MCDs. Section 6 summarises the research.

Systematic review protocol for patients’ prioritisation

The scope of this study was established by using the keywords ‘telemedicine’, ‘triage’, ‘priority’ and ‘sensor’. Other telemedicine studies, such as surveys and reviews, were excluded. The scope was limited to English literature but considers all health-related areas. Three digital databases were searched for target articles: (1) the Science Direct database offering access to science, technology and articles in highly reliable journals; (2) the IEEE Xplore Library of technical literature in engineering and technology and (3) the Web of Science (WoS) service [46, 47]. These databases index cross-disciplinary research in sciences, social sciences, arts and humanities [48, 49]. The justification behind this selection is to cover scientific and technical literature and provide an extensive insight into researchers’ efforts in a wide yet relevant range of disciplines [50,51,52]. Study selection involves searching literature sources and the subsequent three iterations of screening and filtering [53]. The first iteration excludes duplicate articles and collects only articles from the last six years (2012–2017) by using the Mendeley software. The second iteration filters the reading titles and abstract and excludes articles out of our domain. Lastly, the third iteration filters a full-text reading and excludes articles out of our domain and out of our criteria, as shown in Fig. 2. All iterations apply the same eligibility criteria and followed by screening and reviewing. The search was conducted in Science Direct, IEEE Xplore and WoS databases via their search boxes on January 2017. We used a combination of keywords that contained ‘medical system’; ‘Telemonitoring’; ‘E health’; ‘Telemedicine’; ‘Telehealth’; ‘healthcare services’; ‘remote monitoring’ and ‘mobile physician’ in different variations combined by the operators ‘OR’ and ‘AND’, followed by ‘Triage’; and ‘Priority’ in different variations combined by the operators ‘OR’ and ‘AND’ and by ‘sensor’. The exact query text is shown at the top of Fig. 2. We further used the options in each search engine to exclude book chapters and other types of reports other than a journal and conference articles, considering that those two venues are the most probable to include up-to-date and proper scientific works relevant to our survey in this emergent trend of telemedicine. Every article that met the criteria was included. We set an initial target of mapping the space of research in our title into a general and coarse-grained taxonomy composed of two categories. These categories were derived from a presurvey of the literature with no constraint (Google Scholar was used to obtain a preview of the landscape and directions in the literature). After the initial removal of duplicates, articles were excluded in three iterations of screening and filtering if they did not fulfil the eligibility criteria. The exclusion reasons include the following: (1) the article is non-English, (2) the focus is on a specific aspect of healthcare technology and (3) the target is the general telemedicine application. Herein, we focused on healthcare services, patient prioritisation, patient triage, disaster management, network failure, sensors in telemedicine and security of telemedicine.

Fig. 2

Study selection flowchart containing the exact query and inclusion criteria

Taxonomy analysis

The initial query search obtained 3064 articles (i.e. 911 from Science Direct, 1496 from IEEE Xplore and 657 articles from WoS) published within 2007 and 2017. Unfortunately, we were unable to download only two scientific articles from WoS because of accessibility issues. With three categories, the articles filtered by the following sequence were adopted. Of the 1612 papers collected roughly from the last six years (2012–2017), 62 were duplicates. After scanning the titles and abstracts, we further excluded 1264 papers. Then, 163 papers were excluded at the last full-text reading excluded. A total of 123 papers were finally obtained, which we read thoroughly to determine a general map for the conducted research on this emerging topic. Through taxonomy analysis, specific patterns and general categories were observed in the telemedicine architecture. The mapping and domains of telemedicine technology are illustrated in Fig. 3.

Fig. 3

Research taxonomy on telemedicine applications

Sensor based (tier 1)

This category highlights the challenges and sensor techniques which enables the continuous monitoring of healthcare services. Wireless body area networks (WBANs) include small wireless sensors that collect and carry patients’ vital sign information [54]. In the literature, sensor-based (Tier 1) telemedicine applications have been discussed in seven domains.

The first domain is ontology, which focuses on the extended principles of topology that deeply explains wearable platforms containing ‘mainstream magnetic and inertial measurement units’ [55].

The second domain is reliability, which contains three areas in the literature. The first area is congestion control; some studies focus on detecting congestion and control protocols for remotely monitoring the health and healthcare conditions of patients by WBANs [56, 57]. The congestion management protocol is the main contribution of other studies and is widely used in medical applications [58, 59]. The second area is packet delay and link quality. In [60], ‘real-time publish-subscribed middleware functions’ were established in healthcare applications. In [61], techniques for multiple attribute decision analysis and scheme of decision were examined. Another study presented a healthcare system architecture that addresses dynamic behaviour and various traffic in WBAN [62]. Another study was focused on scheme of health tracking and on sensor structure with simulated results [63]. Another study attempted to enhance the quality of the Telehealth system through its proposed infrastructure [64]. Meanwhile, in the third area, which is electromagnetic interference (EMI), the number of users is reduced through keeping EMI on medical sensors at a satisfactory level [65].

The third domain is energy efficiency. Some studies were focused on ‘higher energy efficiency and robust data transmission’ by reducing energy consumption and prolonging network lifetime by increasing the predictability of a system [54, 66,67,68,69]. The last study introduced green-cloud-assisted healthcare services on WBANs [70].

The fourth domain is the quality of service (QoS). Some studies presented QoS for WBANs and provided parameters for understanding the QoS-performance criterion [54, 66,67,68,69].

The fifth domain is security and privacy. One of the studies focused on securing wireless communication for sensor nodes and implemented a prototype application for biomedical sensors [71]. Another article presented secure logging for information collected from the WSN nodes [72]. In [73], researchers introduced various security levels in BANs for medical devices to prevent long-distance attacks. A cryptographic hash algorithm for preserving data integrity was proposed in [74]. Lastly, a study integrated the healthcare enterprise into various eHealth/mHealth systems [75].

The sixth domain is evaluation and assessment. One of the studies focused on the performance evaluation of the IEEE standard 802.15.6 [76, 77]. Another study evaluated the efficiency of wearable health devices to enhance communication among healthcare units [78]. Meanwhile, a study introduced an evaluation of miniature wireless vital-sign monitor for potential trauma triage in intensive care units [79].

The seventh domain is prioritisation over the sensor. Some studies presented priority-based time-slot allocation scheme for WBANs to achieve energy efficiency [80,81,82]. Another study proposed healthcare applications based on the integrated ‘cross-layer routing protocol’ and ‘cross-layer medium-access channel protocol’ [83]. Another study proposed two new scheduling algorithms to satisfy QoS requirements in WBAN networks and overcome the starvation mode of packets without the highest priority [84]. Another article used ‘non-pre-emptive priority queue discipline’ to present a new traffic-sensitive WBAN [85]. Another study presented priority based on ‘congestion-avoidance hybrid scheme’ for WSN to provide an efficient mechanism that reduces power consumption [86]. Furthermore, a study proposed the medium-access control (MAC) protocol for considering the priorities of several biosignals with different characteristics and setting up minimum packet delay time to guarantee data effectiveness [87]. Other studies focused on the improvement of the performance of ‘MAC protocol of WBANs’ for the prioritisation of numerous vital signs to ensure data efficiency [88, 89]. Finally, [90] presented probabilistic real-time systems in BASNs with fixed-priority pre-emptive scheduling.

Gateway based (tier 2)

Gateway is a common literature term that refers to using any wireless devices, such as phones and other devices for communication, which are often used for educating consumers regarding the use of ‘preventive healthcare services’ in medical care [91, 92]. Gateway-based (Tier 2) telemedicine applications have been studied in different domains.

The first domain is a mobile user interface (MUI). In [93], the approach depends on a context and rules to design MUIs for mHealth use.

The second domain is evaluation. In [94], medical alarm dissemination feasibility was explored, and mobile phones were used in the failure or congestion cases of network in an urban environment.

The third domain is treatment support and disease surveillance. The key purpose of both topics is to decrease the harm caused by the outbreak, epidemic, predicted and pandemic cases, then to observe and identify the factors causing such situations. In some articles, patients were allowed to monitor and manage chronic diseases. Meanwhile, chronic disease management and patient monitoring on body temperature, heart rate and blood pressure were conducted other studies [95, 96]. Applications that can be used for some diseases, such as fever, high BP and diabetes, were introduced and used in devices based on biometrics, such as tensiometers, thermometers and glucometers [97, 98]. Other studies presented systems based on social media [99], which presented the tracking of children’s vaccination coverage in rural areas. In [100], the researchers developed a software for dengue prevention in Sri Lanka. Patients with major depression were treated by a method presented in [101], in which patients were allowed to obtain daily interactive sessions featuring personalised and adaptive, as well as continuous monitoring of patients with Parkinson’s disease [102]. In [103], the researchers presented systems for personal coaching; the systems combines ‘on-body sensing with smart reasoning and context-aware feedback’. Lastly, eating-disorder treatment was studied in [104].

The fourth domain is disaster management. The management and organisation of all the responsibilities and resources necessary for addressing emergency cases cover all the humanitarian aspects, that is, recovery, preparedness and response, to decrease the harmful effects of natural disasters, indicating the system of mHealth management. These studies applied the system of mHealth in a ‘tsunami-stricken disaster’ scenario, as well as proposed a platform for developing ‘a field accident and emergency centre intelligent monitoring system’ [105, 106]. The study of [107] presented an assessment system of patients in real time on the basis of ‘mobile electronic triaging’ and has been performed by sensor-detected information and crowdsourcing. Other systems for rescue operations in urban areas are based on situational awareness, indoor and outdoor [108]. Tracking system of pilgrims in holy spaces was also developed [109]. In [110], a network called ‘Medical Body Area Network’ was presented, which gathers triage and general physiological data in case of a disaster by using sensors.

The fifth domain includes the integration of data source and aggregation. Integration refers to the incorporation of multiple sources of data that can be heterogeneous for the utilisation of healthcare data in the clinical field, production of a mobile operator and development of solutions that support the connection between patients and healthcare providers. Aggregation is demonstrated in ‘Mobile Aggregation Centres’ and enhances system scalability and flexibility. The modelling of linear data with an expert priority was demonstrated in [111]. The theory-based approach and the design description among architecture, algorithmic and technology systems were reported in [112]. Healthcare environments in virtual organisations were integrated in [113]. Two architectures for the aggregation of healthcare data. The first architecture, which enables aggregation through cloud-assisted WBAN, was first presented in [114]. In the second architecture, a priority scheme for cloud-assisted WBANs with privacy maintenance, was presented in [115].

The sixth domain is network management, in which any wireless technologies, such as mobile phones, can be used to support the objectives of mobile health through SMS, calling and mobile phone applications, as well as to develop and enhance the management of mobile healthcare network. A capacity-sharing scheme for allocating radio resources depends on a priority-aware pricing was proposed in [116]. In [117], a mechanism of incentive compatibility in e-health networks to schedule the transmission. Scheme supports multi-user sharing proposed in [118]. Another study presents patient monitoring using mobile ad-hoc network to classify challenges to improve the communication reliability [119].

‘Ambient Assisted Living (AAL)’ is the seventh domain. This domain focuses on patient tracking and monitoring, particularly for patients staying alone at home or solely receiving treatment in hospitals. Models that simulate daily activities of a person living alone at home were proposed in [120, 121] and [122] for the implementation of data-driven, cloud-based and semantic software through the knowledge acquired by such models. ‘Internet-of-Things (IoT)’ and ‘Cyber-physical Systems’ are more capable of predicting and more clever for home/office in daily life and hospitals, as presented in [123].

The eighth domain is the decision support system, which is a computerised system that assists decision-making processes and provide precise diagnosis for any disease. Decisions related to context awareness sets and processing are enhanced, and thus the presentation of information to professional healthcare are improved [124]. In [125], DSSs based on knowledge embeddable in mobile devices was proposed. Another study focused on discovering and decreasing false alarms produced by the monitoring sensors of patients [126].

Server based (tier 3)

This category is responsible for the real-time remote monitoring of patients through the use of a remote computer in telemedicine environment. The vital signs of patients are collected and then sent to a telemedicine server for further analysis and investigation. After analysing the vital signs, the medical server can support medical professionals by identifying appropriate healthcare services for patients remotely [23]. In the literature, server-based telemedicine applications have been studied in different domains.

The first domain is the analysis process. Some studies conducted huge data analysis on sensing techniques that can improve the efficiency of healthcare services [127, 128]. Meanwhile, ‘activity pattern mining’ was analysed in [129].

The second domain is environment management. Some studies focused on managing the data collection process of elderly people within hospitals [130, 131]. Another study focused on helping physicians to improve management and reveal the issue of overcrowding [132].

The third domain is the evaluation and assessment domain. Some studies evaluated the features and effectiveness of common telehealthcare systems [133,134,135].

The fourth domain is the security and privacy domain. The vital signs collected from medical sensor networks were secured by ensuring confidentiality and integrity [136]. Another study focused on securing e-Healthcare society by proposing various actors to communicate securely [137].

The fifth domain is collaboration field, which is divided into two areas: cooperative environment and tele-expertise between professionals. Cooperative environment involves ubiquitous healthcare in the sharing of medical data over local area networks. A study [138] focused on decentralised data for the accessing of EHRs and PHRs with high performance; these data were saved in distributed data centres. Another study enhanced a healthcare information system to provide high-quality information at any time and any place [139]. The second area, that is, tele-expertise between professionals, focused on exchanging experiences between physicians or professionals to share knowledge and formulate proper decisions for diagnosis and treatment [15, 140,141,142,143].

Finally, the sixth domain is the remote monitoring (telemonitoring). Further investigations regarding this domain are presented in the following subsection.

Remote monitoring (telemonitoring)

In remote monitoring, the medical professional monitors the emergency cases of patients remotely, as well as provides real-time data analysis and instant feedback to patients [15, 23]. The domain of remote monitoring includes studies that are categorised in three areas: patient triage, provision of services to the patient and patient prioritisation.

The first area is patient triage, that is, categorising patients on the basis of their emergency cases. Some studies focused on inside ED triage, which is discussed by [144,145,146], whereas other studies focused on outside ED triage, which is discussed in [147,148,149,150].

The second area contributes to remote healthcare service provision. Several studies have focused on an alert emergency service that alarms a caregiver to provide fast response in case when vital signs become irregular [151,152,153,154,155,156]. Many studies provided services, such as suggestions, tips, drug prescriptions, recommendations and telehealth consultation [157,158,159,160,161]. Some studies recommended on selecting nearby and suitable hospitals or physicians according to patients’ conditions [162, 163]. A study focused on providing healthcare services and treatment while travelling vehicles on the fly [164]. Another study presented the existence of first-aid services in an ambulance [165]. Moreover, another study introduced a new eldercare service that connects the clinic of a remote physical therapist and the home of an elderly [166]. Finally, [167] presented an approach for managing the prescribed medication for patients by notifying them about drugs and doses.

Patient prioritisation

The third area is patient prioritisation. This section addresses patient prioritisation by server-based (Tier 3) telemedicine application, indicating that the prioritisation of patients should be appropriately arranged to determine the necessary treatment and to transport them to hospitals according to the patients’ condition. In the literature, telemedicine application has been studying on patient prioritisation. This study mainly focused on the remote monitoring of patients, as well as on the proposed application based on android and using IoT. This application includes two stages: Firstly, vital signs are gathered from various sensors, and then it categorises patient status. Secondly, the application sends the gathered vital signs through LTEFemto Cell networks to healthcare centres for patient prioritisation [168]. Another research attempted to develop a system that is based on optimisation using multiswarm PSO technique and can handle some healthcare issues, such as the delivery of services to numerous patients, difficulty in storing large data because of unavailability of servers and data requests that are uncategorised and not enhanced by patient prioritisation [169]. Another research utilised ‘MSHA’ to present a system of telemonitoring based on integration sensory sources (BP, ECG and SpO2) and non-sensory source (text inputs). The research tried to enhance the efficiency of healthcare scalability by assisting the remote prioritisation and triaging of the heart chronic diseases of patients [23]. Lastly, another study [26] proposed a methodology to enhance decision-making process for prioritising patients with CHD through telemedicine.

Healthcare service concerns in telemedicine

This section introduces an overview of healthcare service concerns in telemedicine. Further healthcare services are apparently required, particularly services supplied from outside of hospitals [170]. Chronic diseases (e.g., cardiovascular diseases, cancer and diabetes) are critical matters for healthcare services, given that these diseases embody one of the first causes of mortality, morbidity and disability [171]. Several challenges occur in healthcare service provision for telemonitoring systems [23, 31]. However, this study focused on the challenges related to scalability. The challenges in healthcare service in relation to scalability problem are presented in taxonomy shown in Fig. 4.

Fig. 4

Taxonomy of healthcare service concerns and scalability problems

Telemonitoring systems face many serious issues, one of which is patient prioritisation in healthcare service scalability [23]. The increasing demand for healthcare service has resulted in the essential need to prioritise patients [172, 173].

Patient prioritisation in healthcare services scalability concerns

One of the main concerns in providing healthcare service is scalability, particularly in the processes of patient prioritisation [23]. With the growing demand for healthcare service, medical services that are highly effective and scalable are seriously needed [172, 173]. Many research have been conducted to enhance the prioritisation of patients in telemedicine context, as well as resolve the scalability issues [23]. The dilemma of the growing number of elderly people who need timely and effective telemedicine services has been discussed in literature. The increase in the number of patients is estimated to happen in various cases, such as disasters and ageing population, as illustrated in Fig. 5 and presented in the subsections below.

Fig. 5

Problems that cause the increase in users’ request in RHMS

Ageing population

Healthcare services suffer from massive challenges due to the increase in the number of patients [28, 174, 175]. Healthcare professionals have to use any advanced system effectively to meet the increasing system demand [176]. The key reasons of the continuous growth of older generation sets are current demographic changes [177] that cause persistent and earnest problems, such as incidence of ageing diseases and social and economic burdens [177,178,179]. A study found an increase in the number of people aged 45 years or more by 11% in the last contract [180]; the percentage of visits by physicians in this age range for the same duration also increased by 26%.

As the number of patients in healthcare increases, the expenditure of patients for healthcare services also increases [180]. Therefore, the increase in the number of elderly patients is a challenge in telemedicine systems [23]. Globally, the society and the healthcare system are loaded with burdens derived from the ongoing ageing population problems [177,178,179]. By 2030, 13% of the world total population is expected to be assigned to around one billion people aged 65 years or older [181].

Numerous problems in chronic diseases are related to the momentary rise in ageing population and directly influence medical healthcare expenses [182,183,184]. The increase of chronic disease cases along with the increase of ageing population (e.g., heart failure, hypertension and diabetes) makes the healthcare management a serious issue for health systems worldwide [182]. According to the Medicare and Medicaid Services Centre [180], healthcare expenditure in the USA in 1970 was around $75 billion, and it increased more to than $4.3 trillion in 2018, as shown in Fig. 6.

Fig. 6

National healthcare expenditure per capita in the USA [180]

Challenge to global healthcare systems in terms of care delivery quality [180, 184]. Growth in the number of senior citizens leads to the growth in the number of elderly patients [23]. Therefore, researchers have begun to examine how to improve healthcare service provision systems in response to the ageing population problems. They have been investigating and discussing how to enhance healthcare service provision systems responding to the ageing-population issue. A system that could precisely identify heartbeat for elderly patient monitoring was proposed in [185].

Disasters and MCIs

Disasters cause injuries to a considerable number of people yearly. However, the provision of medical services for injured persons remains a concern [41]. In the study of [186] a system that could be applied to monitor the pulse rate and SpO2 of casualties was proposed. Furthermore, in [187], researchers proposed the use of a monitoring system for the pulse rate and ECG of casualties. These systems can be used to transfer data to the server side. In such systems, rescue commanders can monitor casualties in real time. However, the casualties are not prioritised accordingly. In [188], the researchers demonstrated how various characteristics for an emergency scenario influence protocol behaviour; they compared the efficiency of common opportunistic routing protocols by simulating disaster scenarios. The study of [189] proposed the network for queuing for the health condition of victims in the disaster aftermath. An electronic triage system was also proposed by [186]. This system is composed of two types, namely, the electronic triage (E-Triage) tags and E-Triage server. The attached E-Triage tags, which support the monitoring of vital signs for casualties, enables officers to identify a casualty whose physiological condition is drastically changed and requires a rapid response. However, a detailed triage mode is insufficient in mass casualties or in cases in which a triage officer is late. Therefore, identifying new risk evaluation and classification systems enhances intervention and assists patients, caregivers and their providers in disaster preparation [190]. In MCI, patients under remote monitoring might face disruption with the support services required [191]. The capacities of healthcare systems to immediately provide elective healthcare services to causalities are limited; one way to solve such problem is to prioritise the patients remotely to deal with the crowding in case of scalability concerns [23, 192].

Critical review and analysis

This section shows a critical review and deep analysis of the telemedicine application review in terms of patients’ prioritisation. Physicians or nurses have no time to search huge records and determine the vital signs of patients, particularly when the number of patients with emergency conditions is considerable; therefore, a support is needed for them to focus their attention and efforts to delivering excellent care and discerning which patients need immediate care and which patients can wait. A prioritisation process is utilised in telemedicine environment to rank patients and arrange them according to severity and facilitate the process of distinguishing patients with the most urgent condition.

Based on the systematic literature review, the studies by [23, 26] are considered the most relevant in this area. Such studies addressed patient prioritisation in a remote environment and identified those who had CHD. However, such prioritisation solution can only address prioritisation on patients with single chronic disease. In [23], the patients were prioritised by using a priority code (PC) with a range of 0–100. However, only patients with this range can be prioritised, whereas those with the same PC value were sorted in a descending order by using the first come first serve (FCFS) approach. Moreover, FCFS cannot be used in reality, given that some patients may have more urgent cases than those who arrived earlier [193, 194].

Meanwhile, the study of [26] presented a new approach for prioritising the large-scale data of patients with CHDs; this approach uses body sensors during disasters and peak seasons. The patients in this study were scored according to the MCDM techniques, namely, integrated analytic hierarchy process (AHP) and TOPSIS. However, one major problem in this study is that the proposed approach can only prioritise patients with a single chronic disease; therefore, this approach cannot determine the emergency degree of each chronic disease individually to accurately prioritise patients with MCDs.

This research has not come across any other research that has exclusively presented a solution for remote prioritisation in a large scale of patients with MCDs, especially in the server side of telemedicine applications (Tier 3). Such issue, if handled and addressed, can save lives, among other advantages.

Furthermore, [26] recommended the adoption of a decision-making platform for different chronic diseases (myocardial infarction, diabetes and high or low BP). This platform can be used for patient prioritisation, given the different diseases and emergency levels of each patient. As mentioned, the present study aims to introduce ways to improve the prioritisation process for patients with MCDs in the server (Tier 3) by designing and refinement to accommodate patient’s requests and strictly prioritise and rank patients with emergency conditions. Finally, in line with the relevant study in the remote monitoring environment, the MCDs were considered as proofs of concept. Further investigation on RHM through telemedicine and the case study is demonstrated in the following section.


Patients may experience various chronic diseases, including diabetes, chronic BP disease, and CHD. Chronic diseases have become a growing serious concern in E-Systems of healthcare worldwide. For instance, the clinical expenses of chronic diseases in the USA are projected to reach 80% of the total medical costs, and more than 150 million people may have chronic diseases by 2020 [195]. Moreover, health systems and individuals bear huge burdens by chronic diseases due to the frequent visits of patients, who have chronic diseases, to the ED that are frequently unscheduled, as well as lengthy admissions in hospital [173, 196].

Healthcare researchers and practitioners have been working on health monitoring applications out-of-hospital, particularly in the home environment, for a long time. Telemedicine requires continuous monitoring of the data relevant to physiological conditions; these data can be used to manage chronic diseases [197]. Patients whose homes are situated far from hospitals and who utilise telemedicine may have various chronic cases, such as chronic BP, CHD and diabetes [198, 199]. Thus, we present a scope for two popular chronic diseases from two perspectives, namely, medical and chronic diseases, as presented in the next subsections.


Around 12 million people die around the world annually due to CHDs [195]. CHDs have several kinds, and disease symptoms can appear in patients. For instance, ‘cardiac arrhythmia’ is an emergency case that can be life threatening and can lead to sudden death and cardiac arrest. According to the American Heart Association (2010), arrhythmia caused the death of around 55% of patients who had heart disease [198]. Serious cases of arrhythmia, such as fibrillation or ventricular tachycardia are common results of vortex-like re-entrant electric waves in the cardiac tissue. The timely diagnosis of CHDs is crucially needed in the medical field due to the impact of heart disease to the health and working performance of patients, particularly elderly patients [195]. Telemedicine plays a pivotal role in the delivery of efficient healthcare to patients with various cardiologic diseases [200]. Numerous research discuss the involvement of remote monitoring in the management of cardiac diseases and cardiac home treatments, demonstrating that remote monitoring is suitable in terms of cost effectiveness for the same health outcome. Moreover, telemedicine methods contribute to chronic heart failure care [201]. In-home telemonitoring also reduces mortality and hospitalisation rate [201].

Chronic BP diseases

Around 40% of people worldwide, aged over 25 years, have hypertension [202]. In general, low-income countries have weaker dominance of hypertension (35%) than other countries (40%) [202, 203]. Moreover, the largest percentage of people with hypertension who are uncontrolled, untreated and undiagnosed is higher in low-income countries due to poor health applications and systems than in high-income countries. This rise in the distribution of hypertension is due to population growth, ageing and behavioural risk factors [204]. In summary, deaths caused by hypertension increases when no appropriate action is taken. Rapid detection, suitable treatment and superior hypertension management have important health and economic advantages. In [205], 4494 elderly people who lived in Singapore have hypertension. People who live alone have a higher rate of untreated hypertension (37.3%) than those who do not. In [206], the researchers found that hypertension risk in elderly people who live alone is greater than that in elderly people who are married or living with others.

One common gradual path in managing hypertension is for patients living at home to measure their own BP and send the measurement results in real time to their caregivers. Research has clarified that monitoring BP at home is as dependable and authoritative as ambulatory BP tracking [207]. This research suggests a telehealth system that transmits BP data to a server and provides a messaging function, which sends daily reminders to patients. Moreover, in this research, users had a positive perception of the usefulness and usability of the telehealth system. The use of algorithms for health monitoring through BP sensors has been proposed in many studies [23, 208,209,210]. Finally, clinical guidelines, as well as programs for disease management, cover only single diseases, and clinical studies often excludes people with MCDs [211]. However, MCDs (e.g., CHD, high BP and low BP) have been set as a case study in this research, despite being the leading causes of death worldwide. The sources used to measure vital signs and provided to patients with MCDs are further described and summarised in the next section.

Sources used to measure patients’ medical vital signs

The continuous monitoring of health in WBAN needs the sensors of the system to work at all times [212]. To measure the vital signs of patients, healthcare professionals use many medical devices. In telemedicine applications, sensors play an important role, and patients may need to use various kinds of sensors [184, 213]; The kind and number of sensors required for patient monitoring vary among diseases. In [23], the researchers stated that four medical sources related to CHD must be identified and validated; three of these sensors are utilised as signal sources, and one, as a text source. A set of heterogeneous sources relevant to CHD can be applied in one healthcare platform, which is significant in healthcare monitoring [23, 214]. Table 1 illustrates the brief description of four related medical sources that can be used to triage patients with various chronic diseases.

Table 1 Description of relevant medical sources used in monitoring patients

As shown in Table 1, several sensors, sources and text (heterogeneous sources) are needed in this study. These sources present the diagnosis and reflect the medical signs and symptoms of patients with MCDs.

In conclusion, ECG, SPO2 and BP sensors are important, and they must be employed for CHD. Furthermore, in remote healthcare monitoring, non-sensory data are necessary [23], so that text data can be used as another medical source for the same disease, that is, CHD. Meanwhile, in chronic BP disease, sensors for systolic and diastolic BP can be used in this research to measure the emergency level of patients to enhance the accuracy of triage and healthcare services for patients who have MCDs. Moreover, connections between complaints and vital signs are operationalised as the changing relative significance of vital signs [218]. Hence, each chronic disease (heterogeneous data) has different sources; sensors for MCDs and text should be engaged in this research. Vital signs, such as SpO2 and ECG, are extremely important to the triage process because they provide an objective complement to the triage decision and optimise inter-rater consistency [219]. For each source of these diseases, classifying the patients and their diagnostic information by using the triage process is needed. Triage protocols can be used in determining the treatment priority of patients depending on the severity of their situations [146].

Concern for prioritisation process

Recently, patient prioritisation in terms of MCDs has some shortcomings, given that it still confronts problems and issues related to making multiple decisions. Patient prioritisation with MCDs cannot be solved in existing methods because of various diseases affecting each other. The prioritisation of MCDs in telemedicine applications is a difficult and challenging task because each patient has a multi-group triage of different diseases for evaluating their emergency status. The multi-group triage levels vary among patients on the basis of emergency status. For instance, data variation in multi-group triage for each patient occurs when patient A has a risk level for heart disease, urgent level for high BP and normal level for low BP, whereas patient B has an urgent level for heart disease, normal level for high BP and risk level for low BP. In this case, patient prioritisation is difficult due to the several levels in each patient. Patient A can be prioritised at the highest level on the basis of heart disease (first disease). By contrast, patient B can be prioritised at the highest level on the basis of low BP (third disease). In such case, a confusing question arises, that is, which patient will be prioritised first?

Finally, the proposed work aims to provide prioritisation for patients with MCDs patients, with simultaneous consideration of the triage levels from MCDs, thereby requiring multiple decision-making in identifying the emergency degree of each chronic disease for each patient. In such case, all patients have an available alternative for the decision makers. Thus, the prioritisation of patients with MCDs involves complex multiple decision-making problems. Hence, multiple-criteria decision analysis is essentially needed to address this situation. The next section presents the suitability of the existing MCDM methods to solve the complexity of the prioritisation process for patients with MCDs.

MCDM: an overview

In this section, the definition, advantages, challenges and techniques of MCDM are reviewed. The condition of the art of MCDM techniques in the healthcare application is also discussed.

MCDM: definition and importance

The book by Keeney and Raiffa [220] defines MCDM as ‘an extension of decision theory that covers any decision with multiple objectives. A methodology for assessing alternatives on individual, often conflicting criteria, and combining them into one overall appraisal…’ Another important definition was provided by Stewart and Belton [221], that is, ‘an umbrella term to describe a collection of formal approaches that seek to take explicit account of multiple criteria in helping individuals or groups explore decisions that matter’.

MCDM is considered one of the common techniques in decision-making, and it handles the problems depending on available criteria [222,223,224,225]. MCDM involves structuring, planning and solving decision problems by utilising numerous criteria [222, 226, 227]. The purpose of MCDM is to support decision-makers to solve problems with numerous criteria and alternatives [228,229,230]. It uses a group of qualitative and quantitative methods to overcome complex decision cases, considering multiple criteria, which might be conflicting [231, 232]. MCDM can enhance the quality of decisions; it provides the decision-makers to choose right decisions more effectively and rationally than the traditional processes [233,234,235]. MCDM includes (A) ranking available alternatives and (B) determining the best alternative from available set of alternatives [236, 237]. Accordingly, the suitable alternative(s) will be scored [238, 239].

MCDM, which was based on ‘Health Science Policy Council’ recommendation, was first used in healthcare in May 2014. MCDM involves many methods. Currently, it is increasingly used in the healthcare field [45, 240], [241]. The aim of the task force was to present a foundational report on a topic, that is, an MCDM primer, and then focus on initial recommendations on how to best use the MCDM methods to support decision-making in healthcare [242,243,244].

Thus, the use of MCDM in healthcare has become familiar [245, 246]. Owing to the different available methods of MCDM, healthcare decisions become accurate, and the ability of decision makers to obtain the best solutions improves [247,248,249].

Critical analysis for MCDM techniques

Several MCDM theories have been explored. Figure 7 shows the most commonly used MCDM techniques that use different notations [26, 250,251,252,253,254,255].

Fig. 7

MCDM methods

The advantages and disadvantage of the popular MCDM methods are shown in Table 2 [22, 229, 235, 252, 256,257,258,259,260,261,262].

Table 2 Advantages and disadvantage of MCDM techniques

According to Table 2, the benefit of TOPSIS and VIKOR are appropriate for situations with many alternatives and attributes. These methods can find the best alternative rapidly and are the best among others. Both methods are also specifically convenient to use when quantitative or objective data are given. However, TOPSIS determines a solution with the shortest distance to the ideal solution and the greatest distance from the negative-ideal solution, but it does not consider the relative importance of these distances [256]. By contrast, VIKOR is functionally related to discrete alternative problems. This technique is one of the most practical routes for solving real-world problems. However, such techniques cannot determine and break the decision into subdecisions to guarantee the accuracy of the prioritisation process and determine the accurate emergency degree for patients with multiple chronic diseases that represent multiple-decision making problems. Even though VIKOR technique produce balance between the overall utility and minimising the regret level, increasing the priority level of patient n over patient m in case patient n is more at risk than patient m. Alternative solutions for prioritising patients with MCDs are necessary.


Telemedicine applications, especially in term of patients’ prioritisation, are becoming increasingly popular. These applications open up immense opportunities for real-time patients offering respected medical resources and services. However, relevant research on patients’ prioritisation in applications of telemedicine has unaddressed restrictions. Four stages have been presented in this research, which aims to review and analyse the prioritisation of patients with MCDs through telemedicine. In the first stage, no study presented solutions for the remote prioritisation as the ability to rank a large number of patients with MCDs, especially in Tier 3. In the second stage, MCDs (CHD, high BP and low BP) in RHMSs have been identified and discussed as a case study. This stage also summarises sources, which are used to measure the vital signs of patients with MCDs. In the third stage, this paper highlighted that multiple decision-making problems are issues in patients’ prioritisation over a telemedicine environment. As a result from this stage, using an MCDM as a solution for complex situations and this issue is essentially required. The fourth stage discussed MCDM techniques. Here, after reviewing the MCDM techniques, we found that current methods cannot be used in the prioritisation process for patients with MCDs. In conclusion, a new decision theory for prioritising patients with MCDs over a telemedicine environment is needed.


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This study was funded by Universiti Pendidikan Sultan Idris, under grant FRGS/2016–0066–109-02.

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Mohammed, K.I., Zaidan, A.A., Zaidan, B.B. et al. Real-Time Remote-Health Monitoring Systems: a Review on Patients Prioritisation for Multiple-Chronic Diseases, Taxonomy Analysis, Concerns and Solution Procedure. J Med Syst 43, 223 (2019).

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  • Healthcare services
  • Remote health monitoring system
  • Sensor
  • Priority
  • Triage
  • Chronic disease
  • Multiple chronic diseases